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Neo: Hierarchical Confusion Matrix

npm version

The confusion matrix, a ubiquitous visualization for helping people evaluate machine learning models, is a tabular layout that compares predicted class labels against actual class labels over all data instances. Neo is a visual analytics system that enables practitioners to flexibly author and interact with hierarchical and multi-output confusion matrices, visualize derived metrics, renormalize confusions, and share matrix specifications.

This code accompanies the research paper:

Neo: Generalizing Confusion Matrix Visualization to Hierarchical and Multi-Output Labels
Jochen Görtler, Fred Hohman, Dominik Moritz, Kanit Wongsuphasawat, Donghao Ren, Rahul Nair, Marc Kirchner, Kayur Patel
ACM Conference on Human Factors in Computing Systems (CHI), 2022.
image Paper, image Live demo, image Video, image Video Preview, image Code

Documentation

You can embed our confusion matrix visualization into your own project. There are two ways to use it.

NPM

Install with npm install --save @apple/hierarchical-confusion-matrix or yarn add @apple/hierarchical-confusion-matrix.

Then you can import the module in your project

import confMat from '@apple/hierarchical-confusion-matrix';

const spec = {
    classes: ['root'],
};

const confusions = [
    {
        actual: ['root:a'],
        observed: ['root:a'],
        count: 1,
    },
    {
        actual: ['root:a'],
        observed: ['root:b'],
        count: 2,
    },
    {
        actual: ['root:b'],
        observed: ['root:a'],
        count: 3,
    },
    {
        actual: ['root:b'],
        observed: ['root:b'],
        count: 4,
    },
];

confMat.embed('matContainer', spec, confusions);

Embed the Compiled File

If you prefer to load the compiled JavaScript directly, you have to compile it. To do this, run yarn install and copy the public/confMat.js into your project. Here is a simple example of a small confusion matrix:

<!DOCTYPE html>
<html>
    <head>
        <meta charset="utf8" />
        <meta name="viewport" content="width=device-width" />
        <title>Neo: Hierarchical Confusion Matrix</title>
    </head>

    <body>
        <div id="matContainer"></div>
        <script src="confMat.js"></script>
        <script>
            const spec = {
                classes: ['root'],
            };

            const confusions = [
                {
                    actual: ['root:a'],
                    observed: ['root:a'],
                    count: 1,
                },
                {
                    actual: ['root:a'],
                    observed: ['root:b'],
                    count: 2,
                },
                {
                    actual: ['root:b'],
                    observed: ['root:a'],
                    count: 3,
                },
                {
                    actual: ['root:b'],
                    observed: ['root:b'],
                    count: 4,
                },
            ];

            confMat.embed('matContainer', spec, confusions);
        </script>
    </body>
</html>

Specification

You can find all the options that you can pass via the spec argument in src/specification.ts.

Loaders

The different loaders can be found in src/loaders, which include loading data from json, csv, vega, and a synthetic example synth for testing.

Confusion Data Format Examples

Example 1: Conventional Confusions

The confusions for data with actual labels of fruit:lemon that are incorrectly predicted as fruit:apple, of which there are count 1 of them.

{
    "actual": ["fruit:lemon"],
    "observed": ["fruit:apple"],
    "count": 1
}

Example 2: Hierarchical Confusions

The confusions for hierarchical data with actual labels of fruit:citrus:lemon that are incorrectly predicted as fruit:pome:apple, of which there are count 2 of them. Note : denotes hierarchies.

{
    "actual": ["fruit:citrus:lemon"],
    "observed": ["fruit:pome:apple"],
    "count": 2
}

Example 3: Multi-output Confusions

The confusions for multi-output data with actual labels of fruit:lemon,taste:sweet that are incorrectly predicted as fruit:apple,taste:sour, of which there are count 3 of them. Note , denotes multi-ouput labels.

{
    "actual": ["fruit:lemon", "taste:sweet"],
    "observed": ["fruit:apple", "taste:sour"],
    "count": 3
}

Example 4: Hierarchical and Multi-output Confusions

The confusions for hierarchical and multi-output data with actual labels of fruit:citrus:lemon,taste:sweet,ripeness:ripe that are incorrectly predicted as fruit:pome:apple,taste:sour,ripeness:not-ripe, of which there are count 4 of them.

{
    "actual": [
        "fruit:citrus:lemon",
        "taste:sweet",
        "ripeness:ripe"
    ],
    "observed": [
        "fruit:pome:apple",
        "taste:sour"
        "ripeness:not-ripe"
    ],
    "count": 4
}

See fruit.json for a complete example of confusions for a hierarchical fruit, taste, and ripeness classification model.

Development

Build:

yarn install
yarn build

Test:

yarn test:unit

Dev Server:

yarn dev

Lint & Fix:

yarn lint

Contributing

When making contributions, refer to the CONTRIBUTING guidelines and read the CODE OF CONDUCT.

BibTeX

To cite our paper, please use:

@inproceedings{goertler2022neo,
  title={Neo: Generalizing Confusion Matrix Visualization to Hierarchical and Multi-Output Labels},
  author={Görtler, Jochen and Hohman, Fred and Moritz, Dominik and Wongsuphasawat, Kanit and Ren, Donghao and Nair, Rahul and Kirchner, Marc and Patel, Kayur},
  booktitle={Proceedings of the SIGCHI Conference on Human Factors in Computing Systems},
  year={2022},
  organization={ACM},
  doi={10.1145/3491102.3501823}
}

License

This code is released under the LICENSE terms.